说话人识别采用特征向量对不同变换的行均值进行约简

H. B. Kekre, V. Kulkarni
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引用次数: 1

摘要

本文提出了一种基于行均值特征向量约简技术的文本依赖说话人识别方法。将离散傅立叶变换(DFT)、离散余弦变换(DCT)、离散正弦变换(DST)、离散哈特利变换(DHT)和Walsh Hadamard变换(WHT)五种不同的正交变换技术应用于成帧语音信号。利用特征向量约简技术对变换后的语音信号的行均值向量进行特征提取和匹配。采用欧几里得距离和曼哈顿距离两种相似度量进行特征匹配。结果表明,在特征向量减小的情况下,使用两种相似度度量的准确率保持稳定。该算法使用两个数据库进行了测试:本地创建的数据库和CSLU数据库。观察到,DFT允许最大比例的特征向量缩减。它以很大的优势胜过其他变换。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speaker identification using feature vector reduction of row mean of different transforms
In this paper a novel approach to text dependent speaker identification based on feature vector reduction technique of the row mean is proposed. Five different Orthogonal Transform Techniques: Discrete Fourier Transform (DFT), Discrete Cosine Transform (DCT), Discrete Sine Transform (DST), Discrete Hartley Transform (DHT) and Walsh Hadamard Transform (WHT) are applied on the framed speech signal. Feature extraction in the testing and matching phases has been done by using feature vector reduction technique applied on the row mean vector of the magnitude of the transformed speech signal. Two similarity measures Euclidean distance and Manhattan distance are used for feature matching. The results indicate that the accuracy using both the similarity measures remains steady up to certain reduction in feature vector permitting to reduce feature vector size. This algorithm is tested using two databases: a locally created database and CSLU Database. It is observed that, DFT allows maximum percentage of feature vector reduction. It out performs other Transforms with a big margin.
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